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A Dynamic Control Strategy for Hybrid Electric Vehicles Based on Parameter Optimization for Multiple Driving Cycles and Driving Pattern Recognition

机译:基于多个行驶周期参数优化和行驶模式识别的混合动力电动汽车动态控制策略

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The driving pattern has an important influence on the parameter optimization of the energy management strategy (EMS) for hybrid electric vehicles (HEVs). A new algorithm using simulated annealing particle swarm optimization (SA-PSO) is proposed for parameter optimization of both the power system and control strategy of HEVs based on multiple driving cycles in order to realize the minimum fuel consumption without impairing the dynamic performance. Furthermore, taking the unknown of the actual driving cycle into consideration, an optimization method of the dynamic EMS based on driving pattern recognition is proposed in this paper. The simulation verifications for the optimized EMS based on multiple driving cycles and driving pattern recognition are carried out using Matlab/Simulink platform. The results show that compared with the original EMS, the former strategy reduces the fuel consumption by 4.36% and the latter one reduces the fuel consumption by 11.68%. A road test on the prototype vehicle is conducted and the effectiveness of the proposed EMS is validated by the test data.
机译:驾驶模式对混合动力电动汽车(HEV)的能源管理策略(EMS)的参数优化有重要影响。提出了一种基于模拟退火粒子群算法(SA-PSO)的新算法,用于基于多个行驶周期的混合动力汽车动力系统和控制策略的参数优化,以实现最小的燃油消耗而不损害动态性能。此外,考虑到实际驾驶周期的未知因素,提出了一种基于驾驶模式识别的动态EMS优化方法。使用Matlab / Simulink平台对基于多个行驶周期和行驶模式识别的优化EMS进行了仿真验证。结果表明,与原来的EMS相比,前一种方法将油耗降低了4.36%,后一种策略将油耗降低了11.68%。在原型车上进行了路试,并通过测试数据验证了建议的EMS的有效性。

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